This paper addresses the problem of robust speech recognition in noisy conditions in the framework of hidden Markov models (HMMs) and missing feature techniques. It presents a new sta-tistical approach to detection and estimation of unreliable features based on a probabilistic measure and Gaussian mixture model (GMM). In the estimation process, the GMM is compensated using parameters of the statistical model of additive background noise. The GMM means are used to replace the unreliable features. The GMM based technique is less complex than the correspon-ding HMM based estimation and gives similar improvement in the recognition performance. Once unreliable features are replaced by the estimated clean speech features, the entire set of spectr...
Although the field of automatic speaker recognition (ASR) has been the subject of extensive research...
Although the field of automatic speaker recognition (ASR) has been the subject of extensive research...
In this paper, a new robust training algorithm is proposed for the generation of a set of bias-remov...
This paper presents a novel approach for reconstructing unre-liable spectral components, which utili...
Missing feature theory (MFT) has demonstrated great potential for improving the noise robustness in ...
Missing data theory (MDT) has been applied to handle the problem of noise-robust speech recognition....
Missing Data Theory (MDT) has shown to improve the robustness of automatic speech recognition (ASR) ...
In this paper, we describe a Hidden Markov Model (HMM)-based feature-compensation method. The propos...
Abstract In this paper, we propose a novel feature compensation algorithm based on independent noise...
I hereby declare that I am the sole author of this thesis. I authorize the University of Waterloo to...
Conventional hidden Markov model (HMM) decoders often experience severe performance degradations in ...
Abstract—In this paper, we study a category of robust speech recognition problem in which mismatches...
Model based feature enhancement techniques are constructed from acoustic models for speech and noise...
This book discusses speaker recognition methods to deal with realistic variable noisy environments. ...
Although the field of automatic speaker recognition (ASR) has been the subject of extensive research...
Although the field of automatic speaker recognition (ASR) has been the subject of extensive research...
Although the field of automatic speaker recognition (ASR) has been the subject of extensive research...
In this paper, a new robust training algorithm is proposed for the generation of a set of bias-remov...
This paper presents a novel approach for reconstructing unre-liable spectral components, which utili...
Missing feature theory (MFT) has demonstrated great potential for improving the noise robustness in ...
Missing data theory (MDT) has been applied to handle the problem of noise-robust speech recognition....
Missing Data Theory (MDT) has shown to improve the robustness of automatic speech recognition (ASR) ...
In this paper, we describe a Hidden Markov Model (HMM)-based feature-compensation method. The propos...
Abstract In this paper, we propose a novel feature compensation algorithm based on independent noise...
I hereby declare that I am the sole author of this thesis. I authorize the University of Waterloo to...
Conventional hidden Markov model (HMM) decoders often experience severe performance degradations in ...
Abstract—In this paper, we study a category of robust speech recognition problem in which mismatches...
Model based feature enhancement techniques are constructed from acoustic models for speech and noise...
This book discusses speaker recognition methods to deal with realistic variable noisy environments. ...
Although the field of automatic speaker recognition (ASR) has been the subject of extensive research...
Although the field of automatic speaker recognition (ASR) has been the subject of extensive research...
Although the field of automatic speaker recognition (ASR) has been the subject of extensive research...
In this paper, a new robust training algorithm is proposed for the generation of a set of bias-remov...